Investigating a Quantum-Inspired Method for Quantum Dynamics
- URL: http://arxiv.org/abs/2512.05185v1
- Date: Thu, 04 Dec 2025 19:00:01 GMT
- Title: Investigating a Quantum-Inspired Method for Quantum Dynamics
- Authors: Bo Xiao, Benedikt Kloss, E. Miles Stoudenmire,
- Abstract summary: We extend quantum algorithms which measure and reuse qubits to real-time dynamics of quantum many-body systems.<n>We find improvements that significantly reduce sampling overhead.<n>Our findings show how optimizations for quantum hardware can benefit classical tensor network simulations.
- Score: 2.8141976258456842
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Building on recent advances in quantum algorithms which measure and reuse qubits and in efficient classical simulation leveraging projective measurements, we extend these frameworks to real-time dynamics of quantum many-body systems undergoing discrete-time and continuous-time Hamiltonian evolution, and find improvements that significantly reduce sampling overhead. The approach exploits causal light-cone structure by interleaving time and space evolution and applying projective measurements as soon as local subsystems reach the target physical time, suppressing entanglement growth. Comparing to time-evolving block decimation, the method reaches longer times per sample for the same resources. We also gain the ability to study dynamics of entanglement that would be occurring on quantum hardware when following similar protocols, such as the holographic quantum dynamics simulation framework. We show how to efficiently obtain local observables as well as equal-time and time-dependent correlation functions. Our findings show how optimizations for quantum hardware can benefit classical tensor network simulations and how such classical methods can yield insights into the utility of quantum simulations.
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